个体理性投资时算法决策的异类均衡

Lydia T. Liu, Ashia C. Wilson, Nika Haghtalab, A. Kalai, C. Borgs, J. Chayes
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引用次数: 55

摘要

算法决策的长期影响是由部署的决策规则和个人反应之间的动态形成的。专注于每个人都希望积极分类的设置-包括许多重要的应用,如招聘和学校入学,我们研究了一个动态学习设置,其中个人根据其群体的预期收益投资于积极结果,决策规则被更新以最大化机构利益。通过描述这些动态的平衡,我们表明,由于群体之间的异质性和缺乏可实现性,对理想的长期结果产生了自然挑战。我们考虑了两种干预措施,即群体决策规则解耦和投资成本补贴。我们证明解耦在可实现的情况下达到最优结果,但在其他情况下可能会产生依赖于初始条件的差异效应。相比之下,即使在无法实现的情况下,对投资成本进行补贴也能为处境不利的群体创造更好的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The disparate equilibria of algorithmic decision making when individuals invest rationally
The long-term impact of algorithmic decision making is shaped by the dynamics between the deployed decision rule and individuals' response. Focusing on settings where each individual desires a positive classification---including many important applications such as hiring and school admissions, we study a dynamic learning setting where individuals invest in a positive outcome based on their group's expected gain and the decision rule is updated to maximize institutional benefit. By characterizing the equilibria of these dynamics, we show that natural challenges to desirable long-term outcomes arise due to heterogeneity across groups and the lack of realizability. We consider two interventions, decoupling the decision rule by group and subsidizing the cost of investment. We show that decoupling achieves optimal outcomes in the realizable case but has discrepant effects that may depend on the initial conditions otherwise. In contrast, subsidizing the cost of investment is shown to create better equilibria for the disadvantaged group even in the absence of realizability.
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